Last updated:
Author(s):
Eunjae Park, Kisung Nam, Seokho Jeong, Karl Keat, Dokyoon Kim, Vikas Bansal, Wei Zhou, Seunggeun Lee
Publish date:
20 November 2025
Journal:
Nature Genetics
PubMed ID:
41266648

Abstract

Meta-analysis enhances the power of rare variant association tests by combining summary statistics across several cohorts. However, existing methods often fail to control type I error for low-prevalence binary traits and are computationally intensive. Here we introduce Meta-SAIGE – a scalable method for rare variant meta-analysis that accurately estimates the null distribution to control type I error and reuses the linkage disequilibrium matrix across phenotypes to boost computational efficiency in phenome-wide analyses. Simulations using UK Biobank whole-exome sequencing data show that Meta-SAIGE effectively controls type I error and achieves power comparable to pooled individual-level analysis with SAIGE-GENE+. Applying Meta-SAIGE to 83 low-prevalence phenotypes in UK Biobank and All of Us whole-exome sequencing data identified 237 gene-trait associations. Notably, 80 of these associations were not significant in either dataset alone, underscoring the power of our meta-analysis.

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Institution:
Seoul National University, Korea (South)

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